AIApr 29

Auto-Relational Reasoning

arXiv:2604.2650745.1
Predicted impact top 77% in AI · last 90 daysOriginality Highly original
AI Analysis

This work addresses the need for improved reasoning in AI by combining machine learning scalability with rigid reasoning, targeting general problem-solving without prior knowledge.

The paper proposes a theoretical framework for automated object-relation reasoning integrated with neural networks, achieving a 98.03% solving rate on IQ problems, corresponding to the top 1% percentile or 132-144 IQ score.

Background & Objectives: In the last decade, Machine learning research has grown rapidly, but large models are reaching their soft limits demonstrating diminishing returns and still lack solid reasoning abilities. These limits could be surpassed through synergistic combination of Machine Learning scalability and rigid reasoning. Methods: In this work, we propose a theoretical framework for reasoning through object-relations in an automated manner integrated with Artificial Neural Networks. We present a formal analysis of the Reasoning, and we show the theory in practice through a paradigm integrating Reasoning and Machine Learning. Results: This paradigm is a system that solves Intelligence Quotient problems without any prior knowledge of the problem. Our system achieves 98.03% solving rate corresponding to the top 1% percentile or 132-144 iq score. This result is only limited by the small size of the model and the processing capabilities of the machine it run on. Conclusions: With the integration of prior knowledge in the system and the expansion of the dataset, the system can be generalized to solve a large category of problems. The functionality of the system inherently favors the solution of such problems in few-shot or zero-shot attempts.

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